Tree Learning: Optimal Algorithms and Sample Complexity

Subscribers:
348,000
Published on ● Video Link: https://www.youtube.com/watch?v=Qc_WO5sjMxI



Duration: 35:09
462 views
7


A Google TechTalk, presented by Dmitrii Avdyukhin, 2023-02-21
ABSTRACT: We study the problem of learning a hierarchical tree representation of data from labeled samples, taken from an arbitrary (and possibly adversarial) distribution. Consider a collection of data tuples labeled according to their hierarchical structure. The smallest number of such tuples required in order to be able to accurately label subsequent tuples is of interest for data collection in machine learning. We present optimal sample complexity bounds for this problem in several learning settings, including (agnostic) PAC learning and online learning. Our results are based on tight bounds of the Natarajan and Littlestone dimensions of the associated problem. The corresponding tree classifiers can be constructed efficiently in near-linear time.

Bio: Dmitrii is a last-year PhD student at Indiana University, advised by Prof. Grigory Yaroslavtsev. His main research area is continuous optimization, in particular in Federated Learning settings. He is also broadly interested in the theoretical foundations of machine learning and approximation algorithms. Previously, he interned at Meta, working on a gradient descent-based algorithm for balanced graph partitioning, and Amazon, working on graph convolutional networks, federated learning, and few-shot learning.

A Google Research Algorithms Seminar




Other Videos By Google TechTalks


2023-04-07Improved Feature Importance Computation for Tree Models Based on the Banzhaf Value
2023-04-07A Unifying Theory of Distance to Calibration
2023-04-07Dynamic Graph Sketching: To Infinity And Beyond
2023-03-20Sergey Nazarov | Co-Founder Chainlink | web3 talks | Mar 16 2023 | MC: Marlon Ruiz
2023-03-09Evan Shapiro | CEO Mina Foundation | web3 talks | Feb 16th 2023 | MC: Marlon Ruiz
2023-03-07Zürich Go Meetup: Zero-effort Type-safe Parsing of JSON and XML
2023-03-07Zürich Go Meetup: Let’s Build a Game with Go
2023-03-07Zürich Go Meetup: Run Go programs on your Raspberry Pi with gokrazy!
2023-03-03Online Covering: Secretaries, Prophets and Universal Maps
2023-03-03Auto-bidding in Online Advertising: Campaign Management and Fairness
2023-03-03Tree Learning: Optimal Algorithms and Sample Complexity
2023-03-03A Fast Algorithm for Adaptive Private Mean Estimation
2023-02-13Piers Ridyard | CEO RDX Works | Radix Protocol | web3 talks | Dec 7th 2022 | MC: Blake DeBenon
2023-02-10Sergey Gorbunov | Co-Founder Axelar | web3 talks | Jan 26th 2023 | MC: Marlon Ruiz
2023-02-10Fast Neural Kernel Embeddings for General Activations
2023-02-10Pathwise Conditioning and Non-Euclidean Gaussian Processes
2023-02-10Privacy-Preserving Machine Learning with Fully Homomorphic Encryption
2023-01-19Charles Hoskinson | CEO of Input Output Global | web3 talks | Jan 5th 2023 | MC: Marlon Ruiz
2023-01-18Control, Confidentiality, and the Right to be Forgotten
2023-01-18The Saddle Point Accountant for Differential Privacy
2023-01-18Analog vs. Digital Epsilons: Implementation Considerations Considerations for Differential Privacy